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Related Concept Videos

Bar Graph01:07

Bar Graph

A bar graph is also called a bar chart and consists of bars that are separated from each other. It either uses horizontal or vertical bars to show comparisons among categories. The bars can be rectangles, or they can be rectangular boxes (used in three-dimensional plots). One axis of the graph represents the specific categories being compared, and the other axis shows a discrete value. In this graph, the length of the bar for each category is proportional to the number or percent of individuals...
Pie Chart01:04

Pie Chart

A pie chart (or a pie graph) is a circular graphical chart or a pictorial representation of categorical data. It is divided into slices of pie each indicating numerical proportions. It is also used to show the relative sizes of data in a single chart.
In a pie chart, the central angle, the arc length of each slice, and the area are directly proportional to the quantity or percentage it represents. Some real-world examples that can be depicted using pie charts include marks obtained by students...
Multiple Bar Graph01:07

Multiple Bar Graph

As the name suggests, a multiple bar graph is the same as a bar graph but has multiple bars to depict relationships between different data values. One can include as many parameters as possible. However, each parameter must have the same unit of measurement.
Each bar or column in the multiple bar graph represents a data value. These graphs are used primarily in interrelating two or more sets of data. The categories of different kinds of data are listed along the horizontal or x-axis, whereas...
Interpreting R Charts01:22

Interpreting R Charts

R chart, or range chart, is a fundamental tool in statistical process control used to monitor the variability within a process. It complements the X-bar (x̄) chart by focusing on the range of the data, rather than individual values, providing a clear picture of the process dispersion over time.
An R chart plots the range of subsets of measurements collected from a process. Each point on the chart represents the range—defined as the difference between the maximum and minimum values—of a sample...
Run Charts01:12

Run Charts

Run charts serve as an essential instrument for visualizing the performance of various processes over time, enabling the identification of trends and patterns crucial for quality improvement. These charts map out a series of data points chronologically, offering insights into the stability and efficiency of a process. A run chart's creation involves plotting data points on a graph, with the time intervals on the horizontal axis and the specific measurements on the vertical axis. For example,...
Pareto Chart00:52

Pareto Chart

A Pareto chart is a bar graph or a combination of both line and bar graphs. The bar lengths represent the individual values or the frequency, while the lines represent the cumulative total values. In this chart, the longest bars are arranged on the left and the shortest bars on the right, which makes it easier to read and interpret the data. It can also be called a Pareto diagram or Pareto analysis.
The Pareto chart is named after the Italian economist Vilfredo Pareto, who described the Pareto...

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  1. Home
  2. Lion Data: A Roaring Transformation In Data Visualisation.
  1. Home
  2. Lion Data: A Roaring Transformation In Data Visualisation.

Related Experiment Video

Facilitating the Analysis of Immunological Data with Visual Analytic Techniques
10:58

Facilitating the Analysis of Immunological Data with Visual Analytic Techniques

Published on: January 2, 2011

LION Data: A roaring transformation in data visualisation.

Lucy Todd1, Arthur Fordham2, Ben Deacon3

  • 1Centre for Nature Inspired Engineering & Department of Chemical Engineering, University College London, Torrington Place, London, WC1E 7JE, United Kingdom.

Computers & Chemical Engineering
|June 1, 2026

View abstract on PubMed

Summary
This summary is machine-generated.

LION Data software enhances scientific understanding by enabling rapid, interactive visualization of complex datasets. This tool improves data analysis efficiency and accessibility for researchers across various scientific disciplines.

Keywords:
Accessible softwareData visualisationScientific communication

Related Experiment Videos

Facilitating the Analysis of Immunological Data with Visual Analytic Techniques
10:58

Facilitating the Analysis of Immunological Data with Visual Analytic Techniques

Published on: January 2, 2011

Area of Science:

  • Data Visualization
  • Scientific Computing
  • Bioinformatics

Background:

  • High-quality scientific data is abundant but often underutilized.
  • Existing data analysis tools may lack efficiency and user-friendliness for diverse scientific needs.

Purpose of the Study:

  • To introduce LION Data, a novel software for local, interactive, and online data visualization.
  • To address the gap in making scientific data accessible and understandable for both publishers and users.

Main Methods:

  • LION Data software facilitates efficient upload of Excel and CSV files via a file browsing feature.
  • The software rapidly generates 2D/3D graphs and networks based on user-defined requirements.
  • Utilizes interactive and networking capabilities for enhanced data exploration.

Main Results:

  • Demonstrated significant improvements in the efficiency and breadth of data analyses.
  • Successfully applied in diverse fields, including biological environment modeling (3D scaffolds), battery safety analysis (ultrasound readings), and chemical permeability studies.
  • Enabled rapid generation of complex visualizations from raw data.

Conclusions:

  • LION Data software significantly enhances the accessibility and understandability of scientific data.
  • The tool empowers scientists to analyze and share data more effectively, fostering broader scientific collaboration and application.
  • Promotes wider data accessibility for any audience, bridging the gap between complex data and comprehension.